Bank-to-public loan default discrimination method based on logistic regression
A logistic regression and discriminant technology, applied in the computer field, can solve problems such as inaccurate algorithms, high frequency of risk investigation, and short consideration period
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Embodiment 1
[0254] According to a specific embodiment of the present invention, the bank's corporate loan default judgment method based on binomial logistic regression of the present invention will be described in detail below.
[0255] The invention provides a method for judging a bank's corporate loan default based on logistic regression, comprising the following steps:
[0256] default predictor pre-extraction step,
[0257] Using one-way analysis of variance or multicollinearity verification method, extract the N indicators that have the greatest impact on the default rate according to the basic information of the enterprise and the financial indicators of the enterprise in the database;
[0258] The basic information of the enterprise includes: enterprise name, data year, whether it is in breach of contract, date of establishment, number of employees, total assets and the organization code of the borrower;
[0259] The financial indicators of the enterprise: main business income, cu...
Embodiment 2
[0268] According to a specific embodiment of the present invention, the bank's corporate loan default judgment method based on binomial logistic regression of the present invention will be described in detail below.
[0269] The invention provides a method for judging a bank's corporate loan default based on logistic regression, comprising the following steps:
[0270] default predictor pre-extraction step,
[0271] Using one-way analysis of variance or multicollinearity verification method, extract the N indicators that have the greatest impact on the default rate according to the basic information of the enterprise and the financial indicators of the enterprise in the database;
[0272] The basic information of the enterprise includes: enterprise name, data year, whether it is in breach of contract, date of establishment, number of employees, total assets and the organization code of the borrower;
[0273] The financial indicators of the enterprise: main business income, cu...
Embodiment 3
[0288] According to a specific embodiment of the present invention, the process of extracting the N indicators that have the greatest impact on the default rate by the single-factor analysis of variance method of the present invention will be described in detail below.
[0289] Using the one-way analysis of variance method to extract the N indicators that have the greatest impact on the default rate includes the following steps:
[0290] One-way analysis of variance is carried out for each indicator independently and default or not, and the data in the set year is taken, and the value of the test statistic F is obtained according to the following formula:
[0291]
[0292] in,
[0293] k is the set year number;
[0294] n is the number of all companies in the same industry as the enterprise in the database;
[0295] is the average value of the indicator variable corresponding to the company in the same industry of the company in the i-th year database;
[0296] To se...
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